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Orthogonal Optimized-choice Algorithm for Non-linear Systems Identification Based on Fuzzy Model

机译:基于模糊模型的非线性系统识别正交优化选择算法

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In the paper, the structure determination and parameter estimation for the non-linear systems are presented by means of the dynamic fuzzy model. The parameters estimation of fuzzy model is independent of each other by means of the orthogonal method. The most significant fuzzy rules are selected into the fuzzy model based on the "Innovation-Contribution" criterion and some other information criteria. The orthogonal method which is the stepwise-regression algorithm with appending rules or deleting rules has nothing to do will the selected term sequence of fuzzy rules. The simulation example is studied to demonstrate the effectiveness of the proposed algorithm.
机译:在本文中,通过动态模糊模型提出了非线性系统的结构确定和参数估计。模糊模型的参数估计通过正交方法彼此独立。基于“创新贡献”标准和一些其他信息标准,将最重要的模糊规则选择为模糊模型。具有附加规则或删除规则的逐步回归算法的正交方法与所选术语序列的模糊规则序列无关。研究了仿真示例以证明所提出的算法的有效性。

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